1 / 50

Thomas Walk, Scott Geib USDA-ARS Pacific Basin Agricultural Research Center, Hilo HI

Developing genome sequencing for identification, detection, and control of Bactrocera dorsalis ( Hendel ) and other Tephritid pests. Thomas Walk, Scott Geib USDA-ARS Pacific Basin Agricultural Research Center, Hilo HI. Summary. Oriental fruit flies are important agricultural pest

judd
Download Presentation

Thomas Walk, Scott Geib USDA-ARS Pacific Basin Agricultural Research Center, Hilo HI

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Developing genome sequencing for identification,detection, and control of Bactrocera dorsalis (Hendel)and other Tephritid pests Thomas Walk, Scott Geib USDA-ARS Pacific Basin Agricultural Research Center, Hilo HI

  2. Summary • Oriental fruit flies are important agricultural pest • It has been sequenced • Not all sequences are equal • Assembly ongoing, then the fun stuff

  3. GMOD implementation • Chado • Maker • Apollo • Gbrowse • Tripal

  4. Website: www.bactrobase.org • Currently under development • Project news • Access to data • Sequence assembly • Annotations • SNPs/markers • Tools • BLAST • Gbrowse • If you have interest in collaborating please contact • Assist in annotation • Fly sample/species of interest for sequencing • Compare against other datasets • ????? • scott.geib@ars.usda.gov • tom.walk@ars.usda.gov

  5. Tephritid flies are diverse and evolving • Diptera: Tephritidae: Dacinae • Major pest around the Pacific • Larvae feed on wide range of fruits • Adults can have high mobility, fecundity • Recent taxonomic work on the dorsalis complex suggests that it includes over 50 species • 8 considered of high economic significance. • Discrimination of B. dorslais, B. papayae, and B. philippinensis has been especially problematic for many previous molecular studies.

  6. Objectives • Sequence and create a de novo assembly of the genome of the oriental fruit fly (B. dorsalis) • Genomics: • Provide structural and functional annotation of genome through transcriptome sequencing and annotation pipeline • Comparative Genomics: • Perform genome-wide comparative analysis of related strains of B. dorsalis (species complex)

  7. Goals • Create/annotate oriental fruit fly genome • Use as a foundation for developing novel tools • Resistant fruits • Identify genes that could be used in novel control methods • Improve mass rearing • Perform comparative genomics on dorsalis species complex • Develop new molecular markers for distinguishing species boundaries • Develop techniques for rapid ID of flies

  8. Genome sequencing project • Genome size: • 400-600 Mb in size • Source of DNA • USDA-PBARC lab colony strain • Initially collected in Puna, Hawaii • Approach • 454 pyrosequencing • Shotgun and Paired-end sequencing • 8.2 Gb of sequence (~15X coverage) • Assemble Sequence • Annotate Assembly

  9. Origin of DNA sample: • DNA was from the B. dorsalis lab colony, originating from Puna, HI. • To create the DNA sample: • larvae were reared on artificial diet • a pool of larvae was pulled, starved, and extracted. • estimated that 100’s of larvae were included in each extraction • Two different DNA samples were sequenced • Look at which DNA sample used in each sequencing library. • Issues that can be caused from using 100’s of individuals for sequencing • Variations in population can cause havoc to assembler • Assembler assumes that there is little/no variation in sample • Rather than sequencing a single genome, we are sequencing all of the variation in all of the individuals

  10. Sequencing and Assembly

  11. Current Bdor Assembly (Newbler 2.X Developmental version) • Current assembly includes 435 Mb of sequence • in the range of the estimated genome size • 83% of that sequence has been places into large contigs (those longer than 500 bp) • 77% are placed into scaffolds

  12. Compare to other assemblies • Communicating with other groups doing insect genomes on 454 • Al Handler (USDA-ARS), Baylor Seq Center • Medfly: Similar issue with small contig size (under 2kb), no PE data yet (only 3 kb planned at this point) • Baylor • Centipede: 29X coverage w/454, N50 Scaffold size is 175 kb • Pea Aphid: 464 Mb genome size, 22,800 scaffolds with N50 scaffold size of 88.5 kb (not 454 project) • 454 life sciences/U of Wisconsin • Leaf-cutter ant: N50 Scaffold 6.2 Mb from 13 shotgun, two 8kb, and one 20kb PE runs. (all ants are sibs from same queen, low heterozygosity)

  13. Shortfalls of current assembly • Heterozygosity • Poor read pairing 20 kb PE library • Contig size small • N50 length is 2,100 bases (half of the genome is in contigs of 2,100 bases or larger) • Solutions: • Sequence more • More inbreeding, fewer individuals • Sequence smaller paired-end library (3kb) • Increase coverage • Use better assemblers

  14. Quality of PE library construction: • It is expected that ~50-80% of the PE library reads should contain 2 mate pairs with linker sequence • For the 8 kb libraries, the quality of the libraries looked very good • Size of library is very consistent, deviation of library is low, and the number of reads with mates is high • For the 20 kb libraries, the quality was less • Size of library is also consistent (~17.5 kb), deviation is several thousand bases, but the number of reads with mates is very low (~5-10% of the library) • 2.17 M reads of 20 kb PE library = 265k PE reads

  15. 454 Suggested Sequencing Approach • Do WGS to 15x coverage, add 3-4x 3kb PE, 2x 8kb, and 2x 20kb • 6-8x coverage gives good contig assembly/coverage • 10-12x Scaffolds start to form • 12-18x coverage Large Scaffolds start forming • 25x coverage Limit to improving assembly, no need for additional sequencing • We followed this pretty well (although we have no 3 kb PE data)

  16. Improving assembly with more sequencing?? • Remake 20kb libraries and get more PE information • Most critical thing to do! • Other things that could be done: • Improve depth with Illumina sequencing? • Could increase contig size • Issue with compatible assemblers • BAC-end sequencing? • Obtain very long PE information • No method for BAC-end library prep for 454

  17. Illumina sequencing • Illumina short insert libraries will help increase small contig size (and very cost effective, $3,000/run) • Suggested by folks at Baylor and 454 • At the end of January Illumina sequence returned • 10 million reads of short insert DNA sequencing • 6 libraries (~14 M reads/library) RNA-seq (transcriptome) sequencing • Currently preparing for assembly

  18. Assembly of Illumina and 454 • JCVI Celera Assembler • Supports hybrid 454/illumina assembly • Estimated memory usage higher than what we have currently at PBARC or Maui-HOSC • New Cluster will be able to handle assembly

  19. Alternative Assemblers • Working with Sergey Koren at JCVI on using Celera Assembler • Takes more time/memory/disk space than Newbler • 1 week (on 8 cores), 50 gigs RAM, 800 GB disk space • Others have found it better than Newbler, trial run on our data did not find this • many more smaller scaffolds, but larger contigs: • Also plans to try CLC Bio assembler and ARACHNE (this could go faster with access to more computing power)

  20. Other genomics work • RNAi gene silencing based on proteomics results • Genome wide analysis for novel markers • RAD sequencing (Restriction Site Associated DNA sequencing) • Sequence 1000’s of sites across genome associated with restriction enzyme cut site • Rapid ID of SNPs/polymorphic regions and genetic mapping • Potentially screen 100’s of flies • Transcript analysis • RNAseq • Sequence 1000’s of sites across genome associated with restriction enzyme cut site • Rapid ID of SNPs/polymorphic regions and genetic mapping • Potentially screen 100’s of flies

  21. RNAi based gene silencing • Working with gene list made with Chiou Ling (Stella) Chang’s proteome data • Target genes that will disrupt digestion/absorption of nutrients in food and/or reproductive capability of fly. • Silence genes in flies growing in liquid diet to ID physiological changes. • Create gene list of targets for plant engineering

  22. Genome-wide comparison of the dorsalis complex • Using RAD-tag approach • Restriction site associated sequencing to produce tags across genome • Sequence ~20 populations within the dorsalis complex • Map back to our dorsalis reference • Define regions which are stable within but variable between populations to define species/subspecies in complex.

  23. RAD-tag sequencing • Baird et al., 2008

  24. RNAseq Analysis • Sequence gene expression through life cycle of Oriental fruit fly • RNA (cDNA) from the following life stages (whole organism) • sequenced on IllumniaGAIIx, 2 samples/lane • Uses • Construct database for proteomics • Expression analysis • Annotation evidence • Population genetics when combined with other population sequences

  25. Sequence QC • Read length • All reads are 100 bp in length and have a mated ~ 150 bp away from it • Number of reads/library • Approximately 15-20 million reads/library X 2 • Quality of reads is high, but tails off at end of read • Several different filtering methods attempted • Filtering reads that contained >=10% bases with quality score below 20 seemed to be a nice stringency • Reduce # reads from ~ 18 M to ~ 13 M

  26. Sequence assembly • ABySS/trans-ABySS k-mer assembly software chosen to perform assemby and library comparisons • Perform assembly with different k-mer (hash) sizes from N/2 to N-1 (N = read length) • Smaller kmer- low abundant transcripts • Larger kmer- high abundant transcripts • For our reads that means from 50 – 96 bp • ABySS then merges these 25 assemblies into a consensus assembly

  27. Length vs coverage Quality filtering reads Increase coverage Increase read length Fewer short contigs

  28. So next step • Assemble all libraries separately • Just finished • Assemble all libraries together • Running right now • Annotate Assemblies • BLAST, GO, PATHWAY • SNP Call • Between our libraries and Taiwan and NZ • RNAseq analysis

  29. Other Transcriptome Projects • Juchun in Tiawan is giving us access to her data, different population of Oriental fruit fly • Karen Armstrong in NZ has data from 2 other populations. • Interesting possibility to explore genome wide species variation (of interest to IAEA and APHIS in species definition) • Good Multinational Collaboration

  30. Papaya Genome • ONLY NEW 454 data, Average depth = 10X Est. genome size 463 MB • scaffoldMetrics • numberOfScaffolds = 13069; • numberOfBases = 330192496; • avgScaffoldSize = 25265; • N50ScaffoldSize = 1511029; • LargestScaffoldSize = 7677599; • largeContigMetrics • numberOfContigs = 77548; • numberOfBases = 269131402; • avgContigSize = 3470; • N50ContigSize = 6644; • largestContigSize = 85477; • Need to add in the old Sanger sequencing data, it is the next thing to run on my computer in my office

  31. Annotation and Databasing • As we have been waiting for sequencing data and assembly: • Annotation pipeline is setup and tested on a subset of data • GMOD database (CHADO/postgresql) setup and configured to handle data • Project website designed by UH Hilo student to disseminate data (through secure login) using genome browser, blast, and ftp • Basically, once we get a quality assembly, we are ready to run with the data

  32. Acknowledgments Sequencing Shaobin PBARC Eric Jang Dennis Gonsalves Steven Tam Nicholas Manoukis Stella Chang Natasha Sostrom Collaborators with other sequences JuChun Karen Armstrong

  33. Assembly supplemental material

  34. Influence of Het. Mode and incremental assembly on assembly

  35. Not all reads in PE library are PE reads

  36. New 20 kb Library Statistics • First two runs very good, • Next two runs not as good, Shaobin was not sure why

  37. Read Quality distributiuon (average score across read)GPWPV9K04 GP33VEV02

  38. GQKSO6A02 Example High Quality Data

  39. Using the (good) 20 kb data to improve assembly (January 2011) Take home from this, Scaffolds are getting big, but contigs are staying small

More Related